Abstract
In the motion recognition system, the motion track of athletes can be obtained in real time and accurately by using the light motion capture technology, which provides strong support for the training and competition of athletes. The purpose of this study is to explore the application of light motion capture technology based on multi-mode sensor in badminton players' motion recognition system, so as to improve the athletes' training effect and competitive level. In this paper, multi-modal sensors combined with light motion capture technology are used to obtain real-time athletes' motion data through sensors installed on athletes, and the data is analyzed and processed by algorithms. The position of athletes is tracked by optical sensors to obtain their motion trajectory. The research results show that the light motion capture technology based on multi-modal sensors can accurately identify the movement posture and action of badminton players, real-time monitoring of athletes' movement status, and provide timely feedback and guidance. Through the application of sports recognition system, the training effect of athletes has been significantly improved, and the competitive level has been effectively improved.
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Tiejun Zhang has contributed to the paper’s analysis, discussion, writing, and revision.
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Zhang, T. Application of optical motion capture based on multimodal sensors in badminton player motion recognition system. Opt Quant Electron 56, 275 (2024). https://doi.org/10.1007/s11082-023-05880-9
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DOI: https://doi.org/10.1007/s11082-023-05880-9